---
title: "Kilo-Code"
description: "Connect Kilo Code Agent to CORE's memory system via MCP"
---

![Core Kilo Code](/images/core-kilo-code.png)

### Prerequisites

Before connecting CORE to Kilo-Code, ensure you have:

- CORE account (sign up at [app.getcore.me](https://app.getcore.me))
- Kilo-Code installed and running in your IDE

---

### Step 1: Configure MCP Server

- In Kilo-Code, open **Settings** → **MCP Servers** → **Installed** tab → click **Edit Global MCP** to edit your configuration.
  ![Core Kilo Code](/images/kilo-mcp-server.png)
- Add the following to your MCP config file:

```
{
"mcpServers": {
    "core-memory": {
    "command": "npx",
    "args": [
        "-y",
        "mcp-remote",
        "https://mcp.getcore.me/api/v1/mcp?source=Kilo-Code"
    ]
    }
}
}
```

- Save the configuration. You’ll be redirected to your browser for authentication.

### Step 2 - Authenticate with CORE

- Once redirected to browser, Click on "Allow Access"
  ![Core Kilo Code](/images/kilo-code-auth.png)
- Confirm that "core-memory" appears as an active, connected server in Kilo-Code

## Enable Automatic Memory Integration (Recommended)

### Option 1: Using AGENTS.md (Recommended)

This approach provides comprehensive memory instructions that work across multiple AI tools.

Create `AGENTS.md` in your project root (if it doesn't exist, just append if it already exists):

```bash
touch AGENTS.md
```

Add the following to `AGENTS.md`:

```markdown
---
trigger: always_on
---

⚠️ **CRITICAL: READ THIS FIRST - MANDATORY MEMORY PROTOCOL** ⚠️

You are an AI coding assistant with access to CORE Memory - a persistent knowledge system that maintains project context, learnings, and continuity across all coding sessions.

## 🔴 MANDATORY STARTUP SEQUENCE - DO NOT SKIP 🔴

**BEFORE RESPONDING TO ANY USER MESSAGE, YOU MUST EXECUTE THESE TOOLS IN ORDER:**

### STEP 1 (REQUIRED): Search for Relevant Context

EXECUTE THIS TOOL FIRST:
`memory_search`

- Previous discussions about the current topic
- Related project decisions and implementations
- User preferences and work patterns
- Similar problems and their solutions

**Additional search triggers:**

- User mentions "previously", "before", "last time", or "we discussed"
- User references past work or project history
- Working on the CORE project (this repository)
- User asks about preferences, patterns, or past decisions
- Starting work on any feature or bug that might have history

**How to search effectively:**

- Write complete semantic queries, NOT keyword fragments
- Good: `"Manoj's preferences for API design and error handling"`
- Bad: `"manoj api preferences"`
- Ask: "What context am I missing that would help?"
- Consider: "What has the user told me before that I should remember?"

### Query Patterns for Memory Search

**Entity-Centric Queries** (Best for graph search):

- ✅ GOOD: `"Manoj's preferences for product positioning and messaging"`
- ✅ GOOD: `"CORE project authentication implementation decisions"`
- ❌ BAD: `"manoj product positioning"`
- Format: `[Person/Project] + [relationship/attribute] + [context]`

**Multi-Entity Relationship Queries** (Excellent for episode graph):

- ✅ GOOD: `"Manoj and Harshith discussions about BFS search implementation"`
- ✅ GOOD: `"relationship between entity extraction and recall quality in CORE"`
- ❌ BAD: `"manoj harshith bfs"`
- Format: `[Entity1] + [relationship type] + [Entity2] + [context]`

**Semantic Question Queries** (Good for vector search):

- ✅ GOOD: `"What causes BFS search to return empty results? What are the requirements for BFS traversal?"`
- ✅ GOOD: `"How does episode graph search improve recall quality compared to traditional search?"`
- ❌ BAD: `"bfs empty results"`
- Format: Complete natural questions with full context

**Concept Exploration Queries** (Good for BFS traversal):

- ✅ GOOD: `"concepts and ideas related to semantic relevance in knowledge graph search"`
- ✅ GOOD: `"topics connected to hop distance weighting and graph topology in BFS"`
- ❌ BAD: `"semantic relevance concepts"`
- Format: `[concept] + related/connected + [domain/context]`

**Temporal Queries** (Good for recent work):

- ✅ GOOD: `"recent changes to search implementation and reranking logic"`
- ✅ GOOD: `"latest discussions about entity extraction and semantic relevance"`
- ❌ BAD: `"recent search changes"`
- Format: `[temporal marker] + [specific topic] + [additional context]`

## 🔴 MANDATORY SHUTDOWN SEQUENCE - DO NOT SKIP 🔴

**AFTER FULLY RESPONDING TO THE USER, YOU MUST EXECUTE THIS TOOL:**

### FINAL STEP (REQUIRED): Store Conversation Memory

EXECUTE THIS TOOL LAST:
`memory_ingest`
Optionally include labelIds array to organize the conversation with workspace labels.

⚠️ **THIS IS NON-NEGOTIABLE** - You must ALWAYS store conversation context as your final action.

**What to capture in the message parameter:**

From User:

- Specific question, request, or problem statement
- Project context and situation provided
- What they're trying to accomplish
- Technical challenges or constraints mentioned

From Assistant:

- Detailed explanation of solution/approach taken
- Step-by-step processes and methodologies
- Technical concepts and principles explained
- Reasoning behind recommendations and decisions
- Alternative approaches discussed
- Problem-solving methodologies applied

**Include in storage:**

- All conceptual explanations and theory
- Technical discussions and analysis
- Problem-solving approaches and reasoning
- Decision rationale and trade-offs
- Implementation strategies (described conceptually)
- Learning insights and patterns

**Exclude from storage:**

- Code blocks and code snippets
- File contents or file listings
- Command examples or CLI commands
- Raw data or logs

**Quality check before storing:**

- Can someone quickly understand project context from memory alone?
- Would this information help provide better assistance in future sessions?
- Does stored context capture key decisions and reasoning?

---

## Summary: Your Mandatory Protocol

1. **FIRST ACTION**: Execute `memory_search` with semantic query about the user's request
2. **RESPOND**: Help the user with their request
3. **FINAL ACTION**: Execute `memory_ingest` with conversation summary and optional labelIds

**If you skip any of these steps, you are not following the project requirements.**
```

### Option 2: Using Kilo-Code Rules

Alternatively, you can use Kilo-Code's native rules feature:

Create a new file `core-memory.md` at `.kilo-code/rules` and add the following:

```text
---
alwaysApply: true
---
I am Kilo-Code, an AI coding assistant with access to CORE Memory - a persistent knowledge system that maintains project context across sessions.

**MANDATORY MEMORY OPERATIONS:**

1. **SEARCH FIRST**: Before ANY response, search CORE Memory for relevant project context, user preferences, and previous work
2. **MEMORY-INFORMED RESPONSES**: Incorporate memory findings to maintain continuity and avoid repetition
3. **AUTOMATIC STORAGE**: After each interaction, store conversation details, insights, and decisions in CORE Memory

**Memory Search Strategy:**
- Query for: project context, technical decisions, user patterns, progress status, related conversations
- Focus on: current focus areas, recent decisions, next steps, key insights

**Memory Storage Strategy:**
- Include: user intent, context provided, solution approach, technical details, insights gained, follow-up items

**Response Workflow:**
1. Search CORE Memory for relevant context
2. Integrate findings into response planning
3. Provide contextually aware assistance
4. Store interaction details and insights

**Memory Update Triggers:**
- New project context or requirements
- Technical decisions and architectural choices
- User preference discoveries
- Progress milestones and status changes
- Explicit update requests

**Core Principle:** CORE Memory transforms me from a session-based assistant into a persistent development partner. Always search first, respond with context, and store for continuity.
```

### Using CORE Memory in Kilo-Code

Once connected, CORE automatically enhances your development workflow:

- **Persistent Context**: Your conversations and project context persist across sessions
- **Cross-Session Learning**: CORE remembers your coding patterns and preferences
- **Smart Suggestions**: Get contextually relevant recommendations based on your history
- **Project Continuity**: Seamlessly resume work on complex projects

### Need Help?

Join our [Discord community](https://discord.gg/YGUZcvDjUa) and ask questions in the **#core-support** channel

Our team and community members are ready to help you get the most out of CORE's memory capabilities.
